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Article

Prediction of Ratio of Mineral Substitution in the Production of Low-Clinker Factored Cement by Artificial Neural Network

by
Fethullah Canpolat
1,*,
Kemalettin Yilmaz
2,*,
Raşit Ata
3,* and
M. Metin Köse
1,*
1
Dep. of Civil Eng. Celal Bayar University, 45040 Manisa, Turkey
2
Dep. of Civil Eng, M.Y.O., Sakarya University, 54188 Adapazari, Turkey
3
Dep. of Electrical and Electronics Eng. Celal Bayar University, 45040 Manisa, Turkey
*
Authors to whom correspondence should be addressed.
Math. Comput. Appl. 2003, 8(2), 209-216; https://doi.org/10.3390/mca8020209
Published: 1 August 2003

Abstract

Artificial Neural Networks (ANN) has been widely used to solve some of the problems in science and engineering, which requires experimental analysis. Use of ANN in civil engineering applications started in late eighties. One of the important features of the ANN is its ability to learn from experience and examples and then to adapt with changing situations. Engineers often deal with incomplete and noisy data, which is one of the areas where ANN can easily be applied. Dealing with incomplete and noisy data is the conceptual stage of the design process. This paper shows practical guidelines for designing ANN for civil engineering applications. ANN is in cement industry: in the production of low-clinker factored cement, and in the derivation of composition of natural and artificial puzzolans in the production of high performance cement and concrete. By using ANN, a study to find out the optimum ratio of substitution and compression strengths was carried out.
Keywords: Artificial neural networks; Civil engineering materials design and optimization; blended cement, Mineral admixtures in cement; Natural zeolites; fly ash; coal bottom ash; volcanic ash Artificial neural networks; Civil engineering materials design and optimization; blended cement, Mineral admixtures in cement; Natural zeolites; fly ash; coal bottom ash; volcanic ash

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MDPI and ACS Style

Canpolat, F.; Yilmaz, K.; Ata, R.; Köse, M.M. Prediction of Ratio of Mineral Substitution in the Production of Low-Clinker Factored Cement by Artificial Neural Network. Math. Comput. Appl. 2003, 8, 209-216. https://doi.org/10.3390/mca8020209

AMA Style

Canpolat F, Yilmaz K, Ata R, Köse MM. Prediction of Ratio of Mineral Substitution in the Production of Low-Clinker Factored Cement by Artificial Neural Network. Mathematical and Computational Applications. 2003; 8(2):209-216. https://doi.org/10.3390/mca8020209

Chicago/Turabian Style

Canpolat, Fethullah, Kemalettin Yilmaz, Raşit Ata, and M. Metin Köse. 2003. "Prediction of Ratio of Mineral Substitution in the Production of Low-Clinker Factored Cement by Artificial Neural Network" Mathematical and Computational Applications 8, no. 2: 209-216. https://doi.org/10.3390/mca8020209

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